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3D Reconstruction of Indoor Scenes Based on Feature and Graph Optimization

机译:基于特征和图优化的室内场景三维重建

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In this paper, we propose an approach of visual SLAM (Simultaneous localization and mapping) system, in which we build 3D scene models and estimate the camera poses at the same time. We detect SURF feature points from RGB images and use their relevant depth data to build 3D correspondences. With these correspondences, we align consecutive frames together using RANSAC, while ICP is performed when RANSAC fails. Keyframes are selected based on visual overlap between current frame and the latest keyframe. Furthermore, we detect loop closures between current keyframe and selected candidates of keyframes. Among these candidates, we perform a radius search to further prune the search space. With both sequential constraints and loop closure constraints, a pose graph is created and optimized using a robust global optimizer based on line processes.
机译:在本文中,我们提出了一种视觉SLAM(同时定位和映射)系统的方法,其中我们建立3D场景模型并同时估计相机姿势。我们检测来自RGB图像的冲浪功能点,并使用相关的深度数据来构建3D对应关系。利用这些对应关系,我们使用RANSAC将连续帧保持在一起,而RANSAC失败则执行ICP。基于当前帧和最新关键帧之间的视觉重叠选择关键帧。此外,我们检测当前关键帧和选择关键帧的选定候选之间的循环闭环。在这些候选者中,我们执行半径搜索以进一步修剪搜索空间。通过顺序约束和循环关闭约束,使用鲁棒的全局优化器基于线路进程创建和优化姿势图。

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